MUCD: Unsupervised Point Cloud Change Detection via Masked Consistency

Authors

  • Yue Wu MoE Key Lab of Collaborative Intelligence Systems, Xidian University School of Computer Science and Technology, Xidian University
  • Zhipeng Wang MoE Key Lab of Collaborative Intelligence Systems, Xidian University School of Computer Science and Technology, Xidian University
  • Yongzhe Yuan MoE Key Lab of Collaborative Intelligence Systems, Xidian University School of Computer Science and Technology, Xidian University
  • Maoguo Gong MoE Key Lab of Collaborative Intelligence Systems, Xidian University Academy of Artificial Intelligence, College of Mathematics Science, Inner Mongolia Normal University
  • Hao Li MoE Key Lab of Collaborative Intelligence Systems, Xidian University School of Electronic Engineering, Xidian University
  • Mingyang Zhang MoE Key Lab of Collaborative Intelligence Systems, Xidian University School of Electronic Engineering, Xidian University
  • Wenping Ma School of Artificial Intelligence, Xidian University
  • Qiguang Miao MoE Key Lab of Collaborative Intelligence Systems, Xidian University School of Computer Science and Technology, Xidian University

DOI:

https://doi.org/10.1609/aaai.v39i8.32918

Abstract

3D Change Detection (3DCD) has gradually become another research hotspot after image change detection. Recent works focus on using artificial labels for supervised or weakly-supervised training of siamese networks to segment changed points. However, labeling every points of multi-temporal point clouds is very expensive and time-consuming. In addition, these works lack effective self-supervised signals, and existing self-supervised signals often fail to capture sufficiently rich change information. To solve this problem, we assume that the powerful representation of 3D objects should model the consistency information of unchanged regions and distinguish different objects. Based on this assumption, we propose a new unsupervised framework called MUCD to learn change information of multi-temporal point clouds through bidirectional optimization of change segmentor and feature extractor. The training of network is divided into two stages. We first design a foreknowledge point contrastive loss based on the characteristics of the 3DCD task to initialize the feature extractor, and then propose a masked consistency loss to further learn the shared geometric information of unchanged regions in the multi-temporal point clouds, utilizing it as a free and powerful supervised signal to train a change segmentor. In the inference stage, only the segmentor is used to take multi-temporal point clouds as input and produce change segmentation result. Extensive experiments are conducted on SLPCCD and Urb3DCD, two real-world datasets of streets and urban buildings, to verify that our proposed unsupervised method is highly competitive and even outperforms supervised methods in scenes where semantic information changes occur, exhibiting better performance in generalization ability and robustness.

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Published

2025-04-11

How to Cite

Wu, Y., Wang, Z., Yuan, Y., Gong, M., Li, H., Zhang, M., … Miao, Q. (2025). MUCD: Unsupervised Point Cloud Change Detection via Masked Consistency. Proceedings of the AAAI Conference on Artificial Intelligence, 39(8), 8505–8513. https://doi.org/10.1609/aaai.v39i8.32918

Issue

Section

AAAI Technical Track on Computer Vision VII